A MCP‑like server using the DeepSeek API for Terminal
This project is a prototype implementation of an MCP‑like server using the DeepSeek API. It aims to demonstrate the core concepts behind the Model Context Protocol (MCP) by exposing endpoints that allow AI assistants to:
CMD:
lines) to trigger command execution.Note: While this implementation captures many of the MCP ideas, it is not yet a fully compliant MCP server as defined by Anthropic. It is designed as a proof-of-concept, and further enhancements (e.g., JSON‑RPC protocol support, real‑time updates via SSE, session management, and improved security) would be needed for production use.
Chat Interface:
A simple web-based chat client (using Flask and Tailwind CSS) where users can interact with the server.
AI Integration:
Uses the DeepSeek API to generate responses. The AI can instruct the server to execute terminal commands by including lines beginning with CMD:
.
Terminal Command Execution:
Executes shell commands via a persistent Bash session using the pexpect
library and returns output to the client.
MCP Endpoints:
Provides /mcp/list_tools
and /mcp/call_tool
endpoints that mimic MCP tool discovery and invocation.
Clone the repository:
git clone https://github.com/OthmaneBlial/term_mcp_deepseek.git
cd term_mcp_deepseek
Create and activate a virtual environment:
python3 -m venv venv
source venv/bin/activate # On Windows, use `venv\Scripts\activate`
Install the required dependencies:
pip install -r requirements.txt
Configure your API key:
Update the DEEPSEEK_API_KEY
in .env
with your DeepSeek API key.
Run the Flask server with:
python server.py
Visit http://127.0.0.1:5000 to access the chat interface.
/chat
POST
{ "message": "your message here" }
CMD:
), executes them, and returns the final response./mcp/list_tools
POST
write_to_terminal
, read_terminal_output
, send_control_character
)./mcp/call_tool
POST
{
"name": "tool_name",
"arguments": { ... }
}
Protocol Standardization:
Implement JSON‑RPC for a more robust and standardized communication protocol.
Real-time Communication:
Add Server‑Sent Events (SSE) or WebSockets for live command output streaming.
Session & Security Enhancements:
Introduce per‑user sessions, proper authentication, input sanitization, and comprehensive error handling.
Modular Code Architecture:
Further separate API logic from business logic for better maintainability and scalability.
This project is open-source and available under the MIT License.